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首页> 外文期刊>Cybernetics, IEEE Transactions on >Incremental Class Learning for Hierarchical Classification
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Incremental Class Learning for Hierarchical Classification

机译:分层分类的增量式课堂学习

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摘要

Objects can be described in hierarchical semantics, and people also perceive them this way. It leads to the need for hierarchical classification in machine learning. On the other hand, when a new data that belongs to a new class is given, the existing classification methods should be retrained for all data including the new data. To deal with these issues, we propose an adaptive resonance theory-supervised predictive mapping for hierarchical classification (ARTMAP-HC) network that allows incremental class learning for raw data without normalization in advance. Our proposed ARTMAP-HC is composed of hierarchically stacked modules, and each module incorporates two fuzzy ARTMAP networks. Regardless of the level of the class hierarchy and the number of classes for each level, ARTMAP-HC is able to incrementally learn sequentially added input data belonging to new classes. By using a novel online normalization process, ARTMAP-HC can classify the new data without prior knowledge of the maximum value of the dataset. By adopting the prior labels appending process, the class dependency between class hierarchy levels is reflected in ARTMAP-HC. The effectiveness of the proposed ARTMAP-HC is validated through experiments on hierarchical classification datasets. To demonstrate the applicability, ARTMAP-HC is applied to a multimedia recommendation system for digital storytelling.
机译:可以用分层语义描述对象,人们也可以通过这种方式来感知它们。这导致在机器学习中需要层次分类。另一方面,当给出属于新类别的新数据时,应针对包括新数据在内的所有数据重新训练现有的分类方法。为解决这些问题,我们提出了一种自适应共振理论指导的分级分类预测映射(ARTMAP-HC)网络,该网络允许对原始数据进行增量分类学习而无需预先进行归一化。我们提出的ARTMAP-HC由分层堆叠的模块组成,每个模块都包含两个模糊的ARTMAP网络。不管类层次结构的级别和每个级别的类数量如何,ARTMAP-HC都能够以增量方式学习属于新类的顺序添加的输入数据。通过使用新颖的在线规范化过程,ARTMAP-HC可以对新数据进行分类,而无需事先了解数据集的最大值。通过采用先前的标签附加过程,可以在ARTMAP-HC中反映类层次结构级别之间的类相关性。通过对分层分类数据集进行实验,验证了所提出的ARTMAP-HC的有效性。为了证明其适用性,将ARTMAP-HC应用于用于数字叙事的多媒体推荐系统。

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